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Senior Data Engineer

Stealth iT Consulting
Leeds
2 weeks ago
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My client is a global technology innovator, leading advances in AI, automation and hybrid cloud solutions that help businesses grow.


They are currently recruiting for a Managing Data Engineer to lead the design and development of innovative data solutions that transform complex business challenges into actionable insights.


You’ll champion a culture of excellence, mentor the next generation of data engineers, and drive continuous innovation across advanced analytics initiatives.



RESPONSIBILITIES


  • Develop and lead cutting-edge advanced analytics solutions for complex business problems.
  • Mentor junior data engineers, providing guidance and support in their professional development.
  • Perform statistical analysis, data collection, data mining, and text mining.
  • Design, build, and manage solutions for advanced analytics projects.
  • Utilise predictive analytics tools (SPSS) to draw conclusions and present findings.
  • Stay abreast of emerging advanced analytics trends and technologies, driving innovation within the organisation


This is a hybrid role that will require 4 times a week in the London, Manchester, Hampshire or Gloucestershire based office depending on your location.


The role is only open to candidates that have active DV clearance


In return, my client offers a salary of up to £80K and a £5K sign on bonus.

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